Classification-Based Anomaly Detection for General Data
About
Anomaly detection, finding patterns that substantially deviate from those seen previously, is one of the fundamental problems of artificial intelligence. Recently, classification-based methods were shown to achieve superior results on this task. In this work, we present a unifying view and propose an open-set method, GOAD, to relax current generalization assumptions. Furthermore, we extend the applicability of transformation-based methods to non-image data using random affine transformations. Our method is shown to obtain state-of-the-art accuracy and is applicable to broad data types. The strong performance of our method is extensively validated on multiple datasets from different domains.
Liron Bergman, Yedid Hoshen• 2020
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Anomaly Detection | CIFAR-10 | AUC88.2 | 120 | |
| Out-of-Distribution Detection | CIFAR-100 | AUROC77.2 | 107 | |
| Anomaly Detection | WBC | ROCAUC0.995 | 87 | |
| Anomaly Detection | MNIST | AUC92.01 | 87 | |
| Out-of-Distribution Detection | SVHN | AUROC96.3 | 62 | |
| Tabular Anomaly Detection | pima | AUC ROC0.718 | 53 | |
| Tabular Anomaly Detection | ionosphere | AUC-ROC89.93 | 50 | |
| Tabular Anomaly Detection | BreastW | AUC-ROC0.8328 | 50 | |
| Anomaly Detection | Mammography | AUC-ROC0.8177 | 47 | |
| Anomaly Detection | Satimage 2 | AUC99.29 | 41 |
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